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Computational Scientist/Biologist, Bioinformatics Innovation Hub

Cambridge, UK

Our Mission

Our mission is to restore cell health and resilience through cell rejuvenation to reverse disease, injury, and the disabilities that can occur throughout life.

For more information, see our website at altoslabs.com.

Our Value

Our Single Altos Value: Everyone Owns Achieving Our Inspiring Mission.

Diversity at Altos

We believe that diverse perspectives are foundational to scientific innovation and inquiry. At Altos, exceptional scientists and industry leaders from around the world work together to advance a shared mission. Our intentional focus is on Belonging, so that all employees know that they are valued for their unique perspectives. We are all accountable for sustaining a diverse and inclusive environment.

What You Will Contribute To Altos

The Bioinformatics Innovation Hub is a cross-Altos team working on challenging and exciting scientific projects and cutting edge technologies, requiring both the development and implementation of data processing workflows and advanced analytics of multi-modal datasets to unravel the molecular mechanisms underlying cellular rejuvenation and reprogramming. We expect the candidate to apply rigorous scientific thinking and robust methods, and furthermore have strong work ethics. They will work closely with a cross-disciplinary team including domain knowledge experts, data generation experts, computational and data scientists, as well as AI experts. 

Responsibilities

  • Collaborate closely with domain knowledge experts to plan and design studies to elucidate molecular phenotypes of cellular health, rejuvenation and reprogramming 
  • Focus on FAIR data principles in the processing of internal and external NGS sequencing data, data organisation and metadata capture to enable efficient downstream data consumption
  • Generate insights and models from multi-omics datasets to understand patterns, trends and relationships within data to inform decision-making and solve problems.
  • Develop and implement state of the art statistical, ML and AI methods for large scale data processing and analysis
  • Produce informative visualisations of complex analyses and embed these in automated and bespoke reports and interactive dashboards
  • Partner with other scientists to establish automated, robust and efficient analytical pipelines for reproducible research and to champion the integration of data science into biological discovery
  • Work with IT and data engineering teams to run analyses at scale in high-performance computing and cloud environments
  • Stay current with and adopt emergent analytical methodologies, tools and applications to ensure fit-for-purpose and impactful approaches

Who You Are

We are looking for a strong team player who will be working on a range of projects across the scientific questions central to the Altos mission. Working in a highly collaborative environment, the ideal candidate will be able to quickly understand the biological background of a project, apply their bioinformatics, data analysis and statistical skills, and be able to communicate results clearly and concisely. We are looking for an individual who can not only respond to requests but will also show initiative in complex analytical tasks, take forward a project independently and show ownership of the work done. They should also demonstrate a strong willingness to learn and develop.

The successful candidate will have strong expertise with various NGS workflows and data types such as RNA-seq, ATAC-seq, ChIP-seq, Perturb-seq, etc., be familiar with single cell technologies and have previous experience with integration of multi-modal omics data.

Minimum Qualifications

  • PhD in a quantitative field (e.g. computational biology, mathematics, physics) with significant biological background OR a PhD in the life sciences with significant computational experience
  • Extensive knowledge of multi-modal data analysis 
  • Proficiency in Python and/or R, Linux. Hands-on skills using data science packages (for instance, Pandas, Scikit-learn, NumPy, Tidyverse, Caret)
  • Statistical analysis background 
  • Excellent communication skills. Ability to present complex computational methods to non-experts 
  • Established ability to translate biologists’/project team’s scientific questions into analytical strategies and methods
  • Strong collaboration skills and ability to work as part of a team in an international and interdisciplinary environment
  • Outstanding organisational skills and the ability to work independently
  • Familiarity with databases/resources relevant to drug discovery

Preferred Qualifications

  • Knowledge of single-cell sequencing technologies and analytical techniques
  • Experience with Nextflow
  • Experience with long read sequencing (Nanopore, PacBio)
  • Experience with cloud providers (e.g. AWS)
  • Background in cellular rejuvenation and reprogramming 
  • Familiarity with publicly available single cell data resources

 

The salary range for Cambridge, UK:

  • Scientist I, Computational Biology: £55,250 - £76,700
  • Scientist II, Computational Biology: £63,750 - £90,000
  • Senior Scientist I, Computational Biology: £75,000 - £117,500

Exact compensation may vary based on skills, experience, and location.

 

Before submitting your application:

- Please click here to read the Altos Labs EU and UK Applicant Privacy Notice (bit.ly/eu_uk_privacy_notice)
- This Privacy Notice is not a contract, express or implied and it does not set terms or conditions of employment.

Equal Opportunity Employment

We value collaboration and scientific excellence.

We believe that diverse perspectives and a culture of belonging are foundational to scientific innovation and inquiry. At Altos Labs, exceptional scientists and industry leaders from around the world work together to advance a shared mission. Our intentional focus is on Belonging, so that all employees know that they are valued for their unique perspectives. We are all accountable for sustaining an inclusive environment.

Altos Labs provides equal employment opportunities to all employees and applicants for employment, without regard to race, color, religion, age, sex, national origin, disability status, genetics, protected veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by federal, state or local laws. Altos prohibits unlawful discrimination and harassment. This policy applies to all terms and conditions of employment, including recruiting, hiring, placement, promotion, termination, layoff, recall, transfer, leaves of absence, compensation and training.

Thank you for your interest in Altos Labs where we strive for a culture of scientific excellence, learning, and belonging.

Note: Altos Labs will not ask you to download a messaging app for an interview or outlay your own money to get started as an employee. If this sounds like your interaction with people claiming to be with Altos, it is not legitimate and has nothing to do with Altos. Learn more about a common job scam at https://www.linkedin.com/pulse/how-spot-avoid-online-job-scams-biron-clark/

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